
- Journal of Geographical Sciences
- Vol. 30, Issue 3, 355 (2020)
Abstract
Keywords
1 Introduction
Since the 20th century, interactions between humans and nature have become unprecedentedly intensified. The acceleration of industrialization, urbanization and informatization have led to increasingly serious environmental problems, including shortages of clean water, degradation of ecosystems, increased soil erosion, loss of biodiversity, air pollution, declining fisheries yields, global climate change, and more; the earth has entered the Anthropocene (
The interactive coupling between humans and nature is a large, open and complex system involving society, economy, culture, and nature, which contains complex coupling mechanisms. To understand the interactions, geographers, ecologists, economists, environmental scientists and other scholars from different disciplines have put forward many research theories and frameworks, including principally: Human-earth Areal System (
Through a literature review, we found that the traditional study of the human-nature interaction framework tended to focus on a particular areal system in the spatial dimension, the study of the synchronization of system evolution in the time dimension, and on the linear or direct causal relationships. However, due to socioeconomic transformation, improvements in rapid transportation systems, economic globalization, and the information and intelligence revolution, new phenomena at the global scale, such as time-space compression, long range interactions, and social organization reconstruction, have exerted a profound influence on human and natural systems (
Based on previous theoretical research, this paper first analyzes the scientific connotation of CHANS. Inspired by theories based on the human-earth areal system, telecoupling framework, planetary urbanization, and perspectives from complexity science (
2 Concept of coupled human and natural systems
Human activity on earth’s surface includes a series of complex evolutionary and transformational processes, such as farming, fishing, grazing, trading, urbanization, expansion of residential land, population migration, industrial agglomeration, energy and mineral consumption, and engineering construction (
To better understand coupled human and natural systems visually, we use a conceptual illustration as in
Figure 1.Figure 1
Overall, the two subsystems in the CHANS not only have their own evolutionary rules and restriction factors but also form a complex large coupling system of mutual connection, support, and restriction through continuous material circulation, energy flow, and information transmission. The evolution of coupling system is a self-organizing fluctuation process from a chaotic to an ordered state within a certain range of time and space, through interaction with the external environment and subsystems (
3 Theoretical foundation and connotation of CHNC
3.1 Theoretical foundation
The CHNC framework in this paper builds on a long tradition of scholarship on human-nature interactions. Furthermore, it is an innovative development of existing relevant theories, mainly drawing inspiration from the theories of the human-earth areal system, telecoupling, and planetary urbanization.
3.1.1 Human-earth areal system
3.1.2 Telecoupling
Interactions between distant places are increasingly widespread and influential.
3.1.3 Planetary urbanization
Planetary urbanization theory was proposed in 2011 (
3.2 The connotation of CHNC
Absorbing the core ideas of the above theories, we expand the four analytical dimensions of space, time, representation and organization of CHANS, as well as deconstructing the complex system based on spatial distance, time span, causal relationship, and organizational connection. The four dimensions constitute a panoramic and dynamic analytical framework to explain the coupling mechanism between humans and nature, and the four dimensions, as a whole, nest with each other, having mutual contact. For understanding and memory, the novel analytical framework is expressed in the form of a Rubik’s cube (CHNC).
As shown in
Figure 2.Figure 2
Each cube has four interrelated dimensions: time, space, organization, and representation. As shown in
3.3 Evolution rules of CHNC
There are many colorful small cubes in the large Rubik’s cube CHNC (
Figure 3.Figure 3
We propose that when the color of each side of the Rubik’s cube becomes the same, it represents the coordinated development of all subsystems between different regions (but not to the same extent). This process requires work done by an external force, that is, the system is constantly absorbing negative entropy, and when the system reaches a certain threshold, a critical phase transition and emergence occur. Now, a coupled human and natural system at a certain spatial scale achieves coordination and order, and the Rubik’s cube “game” is successful. Internal or external disturbances in the coupled system can be in the form of a sudden event, such as a natural disaster or financial crisis, or in the form of a slow precipitation effect similar to Boiling Frog. Considering the vulnerability and elasticity of the system, along with the input of energy, once the threshold is exceeded, the system will collapse (phase transition) and order will be broken again; the system will then enter a new round of evolution.
However, it is impossible to achieve complete coordination between human and natural subsystems, and regional development will also not be absolutely coordinated, that is, evolution of the Rubik’s cube is difficult to achieve uniform in color for every sides. In reality, the system constantly dynamically fluctuates and is always in an intermediate state between order and disorder, steady state and unsteady state; this is also the general law of evolution of most complex systems in nature (
4 Four dimensional framework of CHNC
4.1 Spatial dimension: Pericoupling and telecoupling between humans and nature
From the perspective of the areal space dimension, the coupling between humans and nature can be divided into two categories: pericoupling and telecoupling. Most current research refers to pericoupling, which mainly focuses on the coupling mechanism between subsystems, as well as the elements within a particular areal system. Pericoupling includes different linear and nonlinear coupling mechanisms, and many papers and books have been written in this field (
Telecoupling refers to the interactions between humans and nature in different remote areal systems, or at different spatial scales. Compared with pericoupling, the telecoupling is lack of systemic research, and its coupling mechanism is more difficult. However, in the last ten years, many scholars have paid considerable attention to this field. Telecoupling is different from teleconnection in simple natural systems (
4.1.1 Multi-regional telecoupling
MRTC refers to the long-distance interaction and promotion between human and natural systems in different areal systems through various flows, including people, materials, energy, and information. For example, fruit, vegetables, meat, eggs and other foods in big cities come from other small and medium-sized cities, or even other countries. This has a long-distance impact on land use, water security, carbon emissions, and the ecosystem health (
4.1.2 Multi-scale telecoupling
MSTC refers to the interaction coupling between human and nature systems at different scales, which can be divided into two paths: top-down and bottom-up (
Figure 4.Figure 4
4.2 Time dimension: Syncoupling and lagcoupling between humans and nature
From the time dimension, the coupling between humans and nature can be divided into syncoupling and lagcoupling. Current research mainly focuses on the interaction between humans and nature in similar time sections. In quantitative analysis, it is customary to compare natural and human variables in the same time section, and then to analyze the causal relationship between them. In this paper, an interaction effect occurring in a similar time section is called “syncoupling.” This kind of analytical path has been a classical research paradigm for a long time.
However, because social and economic development have a long dynamic process, and nature has its own evolutionary direction, the development of the two systems is path-dependent. Many forces are time lagged. Sometimes the input of new materials, energy, and information may immediately break the original equilibrium structure; but at other times, due to system resilience, it takes a long time for forces to accumulate before showing themselves to be effective. Therefore, the current state of CHANS may be the result of fluctuations in a subsystem or variable many years ago. Similarly, the current social and economic development of humans may have a lagging impact on the local or larger regional eco-environment in the future (
Figure 5.Figure 5
Lagcoupling is a common phenomenon in nature, and is of great significance for examining the real causal relationship between human activity and environmental change. Because of the irreversibility of time, most lagcoupling phenomenon is the influence of the past on the present or the present on the future. For example, land use change in Asia over the last 200 years has resulted in substantial negative ecological consequences, including increased anthropogenic CO2 emissions, deteriorated air and water quality, alteration of regional climate, an increase in disease, and a reduction in biodiversity (
4.3 Appearance dimension: Apparent coupling and hidden coupling between humans and nature
From the perspective of appearance, we divide the coupling mechanism between humans and nature into apparent coupling and hidden coupling. Apparent coupling refers to the direct interaction between subsystems, elements within the CHANS. The causal chain is expressed as A→B, and the external forms can be directly perceived. For example, with the advancement of urbanization in developing countries, urban expansion has directly led to the occupancy of woodland and farmland, and the weakening of ecosystem services (
Figure 6.Figure 6
Moreover, most of the coupling mechanisms between humans and nature involve both apparent and hidden relationships. Like an iceberg in the ocean, such a mechanism consists of two parts: the surface part and the underwater part. Additionally, direct causality at the current cognitive level may well also imply indirect causality due to various mediators. There are also some chain reactions such as A→C→D→…→B, which are similar to the “butterfly effect.” Therefore, apparent coupling and hidden coupling based on the causal chain are unities of opposites.
4.4 Organization dimension: Intra-organizational coupling and inter-organizational coupling between humans and nature
The type of organization discussed in this paper is a group with similar values formed by people’s self-organizing cooperation and competition, in order to achieve certain goals in the process of human development. The values here mainly refer to the trade-off between social economic development and the eco-environment. Governments, NGOs, academics, media, companies, and local community organizations make up different interest groups. Some organizations can also be further subdivided; for example, most governments have departments such as economic development, ecological environment, natural resources, urban construction, water conservancy, energy, and other functional departments, which constitute different political ecologies (
From the organization dimension, this paper divides the coupling between humans and nature into two categories: intra-organizational coupling and inter-organizational coupling. Intra-organizational coupling refers to the interaction between humans and nature in a particular organization. For example, when dealing with the relationship between economic development and the ecological protection, the department of finance would probably rate GDP as of first importance, while the environmental protection department would highly prioritize environmental protection and governance. The media will mainly focus on prominent contradictions in human-nature relationships (such as Amazon rainforest deforestation( https://www.bbc.com/news/world-latin-america-46327634), and the cancer village②(② https://www.theguardian.com/world/2013/jun/04/china-villages-cancer-deaths)) to enhance news viewership and readership as much as possible. The enterprise will focus on maximizing its own economic benefits. Because in intra-organizational coupling the members are mainly in the same interest group, the conflict is relatively small. Therefore, the research objects and goals are clear, and it is easy to grasp the core issues for analysis.
Inter-organizational coupling refers to the complex interest game strategy to tradeoff economic development and environmental protection between different organizations and stakeholders.
Figure 7.Figure 7
There are many examples of inter-organizational coupling, for example, the attention and participation of citizens to the eco-environment for different stakeholders has a significant impact on the local environmental governance (
4.5 Comparison of four-dimensional coupling types in CHNC
Based on the above analysis of the four dimensions of CHNC, we further summarize the basic meanings, conceptual sketches, quantitative methods, and typical cases of eight coupling types, including pericoupling and telecoupling, syncoupling and lagcoupling, apparent coupling and hidden coupling, and intra-organizational coupling and inter-organizational coupling. As shown in the conceptual sketches in
Conceptual framework | Analysis dimensions | Coupling type | Concept | Diagram | Research methods | Typical cases |
---|---|---|---|---|---|---|
“CHNC” | Space | Intracoupling | Interaction between subsystems, as well as the elements within the particular areal system. | ![]() ![]() ![]() ![]() ![]() ![]() ![]() ![]() | Statistics, coupling degree, coupling coordination degree, etc. | Omitted |
Telecoupling | Interaction between humans and nature in different remote areal systems, or in different spatial scales. Two categories: Multi- regional telecoupling (MRTC) and multi- scale telecoupling (MSTC). | Multi-region input-output model, spatial Durbin model, hierarchical spatial autoregressive model, network analysis, material flow analysis, energy flow analysis, etc. | MRTC: Water diversion, industry transfer, tourism, international trade, technology transfer, investment; MSTC: Local responses to climate change, global diffusion of local pollution | |||
Time | Syncoupling | Interaction effect between humans and nature occurring in a similar time section. | Statistics, coupling degree, coupling coordination degree, time series analysis, etc. | Omitted | ||
Lagcoupling | Interaction and feedback between humans and nature in different time periods; the causal chain has relative long time intervals. | Time-delay model, dynamic general equilibrium model, multi-level temporal autoregressive modeling, etc. | The time lag effect of environmental investment on local eco-environment; the 1.5 C global warming target in the Paris Agreement has important effect for current policy. | |||
Appear-ance | Apparent coupling | Direct interaction between subsystems; elements within the CHANS and causal chain are A→B | Correlations analysis, linear regression analysis, coupling degree, coupling coordination degree, etc. | Omitted | ||
Hidden coupling | Interaction between elements or systems is not direct, but works indirectly through a mediator or through an implied system or element, and the causal chain is A→C→B or A(C)→B. | Mediating effects model, multi-region input-output model, environmental footprint, life cycle assessment, etc. | A→C→B: Urbanization has indirect effects on carbon emissions by influencing the structure and intensity of energy consumption; A(C)→B: Pollutants, carbon emissions, virtual water hidden in international trade. | |||
Organization | Intra- organizational coupling | Interaction between humans and nature in a particular organization. | Statistics, game theory, etc. | Omitted | ||
Inter-organizational coupling | Complex interest game to tradeoff human development and environment between different organizations and stakeholders. | Game theory, multi-agent modeling, complex adaptive systems theory, multicenter self-organization theory, complex networks, big data analysis, etc. | Stakeholders such as government, farmers, medias and NGOs have different roles and behavioral responses in ecological compensation. |
Table 1.
Comparison of different coupling types in the Coupled Human and Natural Cube
It should be noted that the eight coupling types of CHNC are relative and dialectical. The length in the space dimension is mainly talked in a particular spatial scale. The length in the time dimension is mostly measured in years in the specific study. The appearance dimension is largely based on a current cognitive level. For the organization dimension, inter-organizational coupling and intra-organizational coupling change with people’s values. Therefore, four-dimensional analysis of the CHNC framework should be conducted in a specific application, and the system thinking and dialectical thinking of unity and opposites should be established.
5 Discussion
5.1 Human-nature coupling matrix based on Coupled Human and Natural Cube
Using complexity science and metaphorical analogy, this paper constructs a multi-scale hierarchical nested complex system of the Coupled Human and Natural Cube by making the four dimensions of time, space, organization, and appearance in the analytical framework. This framework is an effective way to analyze the dynamic evolution mechanism of CHANS.
Any CHANS inevitably exists in time and space in the real world, most of which belong to an organization, and have some hidden sides. Therefore, most of the CHANS have the interaction coupling effect of multiple dimensions simultaneously. The four dimensions of the CHNC also exist simultaneously and are dialectically unified. As shown in
Conceptual framework | Analysis dimensions | Coupling type | Concept | Diagram | Research methods | Typical cases |
---|---|---|---|---|---|---|
“CHNC” | Space | Intracoupling | Interaction between subsystems, as well as the elements within the particular areal system. | ![]() ![]() ![]() ![]() ![]() ![]() ![]() ![]() | Statistics, coupling degree, coupling coordination degree, etc. | Omitted |
Telecoupling | Interaction between humans and nature in different remote areal systems, or in different spatial scales. Two categories: Multi- regional telecoupling (MRTC) and multi- scale telecoupling (MSTC). | Multi-region input-output model, spatial Durbin model, hierarchical spatial autoregressive model, network analysis, material flow analysis, energy flow analysis, etc. | MRTC: Water diversion, industry transfer, tourism, international trade, technology transfer, investment; MSTC: Local responses to climate change, global diffusion of local pollution | |||
Time | Syncoupling | Interaction effect between humans and nature occurring in a similar time section. | Statistics, coupling degree, coupling coordination degree, time series analysis, etc. | Omitted | ||
Lagcoupling | Interaction and feedback between humans and nature in different time periods; the causal chain has relative long time intervals. | Time-delay model, dynamic general equilibrium model, multi-level temporal autoregressive modeling, etc. | The time lag effect of environmental investment on local eco-environment; the 1.5 C global warming target in the Paris Agreement has important effect for current policy. | |||
Appear-ance | Apparent coupling | Direct interaction between subsystems; elements within the CHANS and causal chain are A→B | Correlations analysis, linear regression analysis, coupling degree, coupling coordination degree, etc. | Omitted | ||
Hidden coupling | Interaction between elements or systems is not direct, but works indirectly through a mediator or through an implied system or element, and the causal chain is A→C→B or A(C)→B. | Mediating effects model, multi-region input-output model, environmental footprint, life cycle assessment, etc. | A→C→B: Urbanization has indirect effects on carbon emissions by influencing the structure and intensity of energy consumption; A(C)→B: Pollutants, carbon emissions, virtual water hidden in international trade. | |||
Organization | Intra- organizational coupling | Interaction between humans and nature in a particular organization. | Statistics, game theory, etc. | Omitted | ||
Inter-organizational coupling | Complex interest game to tradeoff human development and environment between different organizations and stakeholders. | Game theory, multi-agent modeling, complex adaptive systems theory, multicenter self-organization theory, complex networks, big data analysis, etc. | Stakeholders such as government, farmers, medias and NGOs have different roles and behavioral responses in ecological compensation. |
Table 1.
Comparison of different coupling types in the Coupled Human and Natural Cube
In theory, a more complex combined matrix of three-dimensional or four-dimensional coupling effects can also be produced. For example, China’s imports of soybeans from the US have increased in recent years, affecting farmers in rival Brazil; meanwhile, environmental groups and scholars are concerned about China’s decision to replace soybeans with wheat, corn and other crops, and to apply more nitrogen fertilizer, as well as increase non-point source pollution over time. This example involves multiple interweaved dimensions of telecoupling, lagcoupling, hidden coupling, and inter-organizational coupling. When we deal with similar practical issues, beginning from a system perspective is a good choice. First, we can conduct a macroscopic qualitative analysis of the issue from the dimensions of time, space, appearance, and organization. Then, we can choose one or two dimensions, according to the degree of importance, to solve the most prominent contradictions in the system; that is, to adopt the idea of “systematic thinking, first heavy then light, break through one by one.” Therefore, the Coupled Human and Natural Cube provides a relatively clear analytical framework for us to analyze the complex human-nature relationship.
5.2 Implications of the Coupled Human and Natural Cube
The framework of CHNC is a logical extension of research on coupled human and natural systems from the perspectives of time, space, appearance and organization. It is the development and deepening of human-earth areal system theory in the new era, which makes up for deficiencies in the traditional framework and it has a general significance for studying CHANS. Different from the human-earth areal system, telecoupling, and planetary urbanization, the main contribution of this framework is providing a considerably comprehensive and interdisciplinary conceptual framework to recognize the evolution and coupling mechanism of the human-nature system. This framework can enrich sustainability science (
The CHNC helps form a comprehensive, steric and multi-dimensional system view to cognize the world. It emphasizes that humans and nature are unity of opposites, like two sides of a coin, and they are an organic whole that interacts, depending on and containing each other, constituting our world. This view accords with the concept of strong sustainability, which assumes that man-made and natural capital are basically complements, not substitutes (
This framework focuses more on positive and negative feedback, spatial spillover, mediating, time lag, stakeholder effects, and so on. When exploring the coupling mechanism of the human-earth system, it helps us to have a holistic view. A comprehensive analysis, involving the analysis of the hidden interactions, “the submerged part of the iceberg,” such as telecoupling, lagcoupling, hidden coupling, and inter-organizational coupling is crucial when regulating the relationship between humans and nature; merely assessing the surface interactions provides a grossly incomplete picture of this relationship. In governmental decision-making, emphasis should be placed on evaluating and balancing the intracoupling and telecoupling, syncoupling and lagcoupling, apparent coupling and hidden coupling, and intra-organizational coupling and inter-organizational coupling effects between the social economy and eco-environment.
The CHNC inspires us to rethink the first law of geography of Tobler in the information age (
5.3 Quantitative research on the Coupled Human and Natural Cube
This paper has proposed a preliminary conceptual framework. How to measure and simulate the CHNC using specific quantitative models is also an important issue. For each dimension, quantitative analysis methods are found in
6 Conclusions
(1) The conflict and disharmony between humans and nature are the root causes of global ecological and environmental problems. The socio-economic system and natural system have their own evolution laws and constraints. Through continuous material circulation, energy flow and information transmission, humans and nature form a giant, complex, coupled system, comprised of interrelated elements supported and constrained by each other. Through interactions with the external environment and subsystems in a certain time and space dimension, the evolution of the coupled system is based on a self-organizing fluctuation process from chaotic state to orderly structure. Normally, the system is in a mid-state between order and disorder
(2) Inspired by theories, including the human-earth areal system, telecoupling framework and planetary urbanization, we extend the connotation of the coupled human and natural systems (CHANS) and its four dimensions—space, time, appearance, and organization, and a novel framework, “Coupled Human and Natural Cube (CHNC),” is proposed to explain the coupling mechanism between human and natural environments. There exist various “coupling lines” in the CHNC, which connect different systems and elements at multiple scales, forming a larger, nested, interconnected, organic system. The rotation of the Rubik's cube represents the spatiotemporal nonlinear fluctuation of the CHANS. When the color of each surface is the same, all subsystems are developing synergistically in different regions. As the system continually exchanges energy with the environment, a critical phase transition occurs when fluctuation reaches a certain threshold, leading to emergent behaviors of the system. The system can now become more orderly or collapse into the next cycle.
(3) The CHNC is interrelated and dialectically unified in the four dimensions of time, space, organization, and appearance, and includes eight types of coupling: intracoupling, telecoupling, syncoupling, lagcoupling, apparent coupling, hidden coupling, intra-organizational coupling, and inter-organizational coupling. Telecoupling refers to the interactions between humans and nature in different remote areal systems, or at different spatial scales. Lagcoupling refers to the interaction and feedback between human and nature systems in different time periods, in which the causal chain has relatively long time intervals. Hidden coupling is the process of interaction and influence between elements or systems that is not direct but works indirectly through a mediator or through an implied system or element. Inter-organizational coupling refers to the complex interest game strategy to tradeoff economic development and environmental protection between different organizations and stakeholders. This paper also summarizes research methods and typical cases of different coupling types. Finally, based on the CHNC, we put forward a general analysis framework of the human-nature coupling matrix to integrate multiple dimensions. Facing the complex human-nature system, we should follow the analytical paths of “systematic thinking, first heavy then light, break through one by one.”
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